通过扩展数据集中的函数数来提高分类器效率

Sujata Gudge, Preetam Suman, Varshali Jaiswal, D. Bisen
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引用次数: 1

摘要

排序任务从已知类任务的数据集开始。具有较少元素的数据集,这会导致分类器的聚合运行减少。本文提出了两种数据集质量开发策略。交叉区域弱的亮点采用类似然构建技术,交叉区域高的要素采用制造构件开发策略。用4个具有2个类的数据集和4个具有不同笔划大小的多个类的数据集来分析所提出的技术的表现。结果表明,该方法与支持向量机(SVM)分类器相比,具有更高的执行阶。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving Classifier Efficiency by Expanding Number of Functions in the Dataset
An order task starts with a data set where the class tasks are known. A dataset with fewer elements, which causes the aggregation run of a classifier to decrease. This paper suggests two quality development strategies for a data set. The class plausibility construction technique is used for highlights with a weak crossing region and the manufacturing component development strategy is used for elements with a high crossing region. An attempt is made to analyses the presentation of the proposed technique using four data sets with two classes and four data sets with several classes with different stroke sizes. The results show that the proposed technique has a higher order execution with Support Vector Machine (SVM) classifier when compared with K-nearest neighbor (KNN) classifier.
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